可转让性
原子间势
领域(数学)
班级(哲学)
计算机科学
统计物理学
材料科学
分子动力学
人工智能
机器学习
物理
量子力学
数学
罗伊特
纯数学
出处
期刊:Acta Materialia
[Elsevier BV]
日期:2021-05-19
卷期号:214: 116980-116980
被引量:198
标识
DOI:10.1016/j.actamat.2021.116980
摘要
Large-scale atomistic computer simulations of materials rely on interatomic potentials providing computationally efficient predictions of energy and Newtonian forces. Traditional potentials have served in this capacity for over three decades. Recently, a new class of potentials has emerged, which is based on a radically different philosophy. The new potentials are constructed using machine-learning (ML) methods and a massive reference database generated by quantum-mechanical calculations. While the traditional potentials are derived from physical insights into the nature of chemical bonding, the ML potentials utilize a high-dimensional mathematical regression to interpolate between the reference energies. We review the current status of the interatomic potential field, comparing the strengths and weaknesses of the traditional and ML potentials. A third class of potentials is introduced, in which an ML model is coupled with a physics-based potential to improve the transferability to unknown atomic environments. The discussion is focused on potentials intended for materials science applications. Possible future directions in this field are outlined.
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